@inproceedings{zhang-liu-2026-pquant,
title = "p{Q}uant: Towards Effective Low-Bit Language Models via Decoupled Linear Quantization-Aware Training",
author = "Zhang, Wenzheng and
Liu, Bingzheng",
editor = "Liakata, Maria and
Moreira, Viviane P. and
Zhang, Jiajun and
Jurgens, David",
booktitle = "Findings of the {A}ssociation for {C}omputational {L}inguistics: {ACL} 2026",
month = jul,
year = "2026",
address = "San Diego, California, United States",
publisher = "Association for Computational Linguistics",
url = "https://preview.aclanthology.org/ingest-acl-workshops/2026.findings-acl.1566/",
pages = "31334--31351",
ISBN = "979-8-89176-395-1",
abstract = "Quantization-Aware Training from scratch has emerged as a promising approach for building efficient large language models (LLMs) with extremely low-bit weights (sub 2-bit), which can offer substantial advantages for edge deployment. However, existing methods still fail to achieve satisfactory accuracy and scalability. In this work, we identify a parameter democratization effect as a key bottleneck: the sensitivity of all parameters becomes homogenized, severely limiting expressivity. To address this, we propose pQuant, a method that decouples parameters by splitting linear layers into two specialized branches: a dominant 1-bit branch for efficient computation and a compact high-precision branch dedicated to preserving the most sensitive parameters. Through tailored feature scaling, we explicitly guide the model to allocate sensitive parameters to the high-precision branch. Furthermore, we extend this branch into multiple, sparsely-activated experts, enabling efficient capacity scaling. Extensive experiments indicate our pQuant achieves state-of-the-art performance in extremely low-bit quantization."
}Markdown (Informal)
[pQuant: Towards Effective Low-Bit Language Models via Decoupled Linear Quantization-Aware Training](https://preview.aclanthology.org/ingest-acl-workshops/2026.findings-acl.1566/) (Zhang & Liu, Findings 2026)
ACL